Integrated with visualization and code-based environment, the platform can complete all the procedures for data science applications, ranging from design to production in one stop, which meets the fast-changeable development requirements of data applications.
Support a variety of data connectors that can be used to access data from various data sources, including local data, external data, and data from databases and data warehouses.
DataCanvas allows workflows to automatically be converted to Hadoop or Spark tasks and submit to execution, and masks complexities of components for big data, which entitles analysts the ability to process big data.
With the container technique and an intuitive drag-and-drop UI, and supportive of multiple language programing, stable and accurate models can be built quickly.
Data analytics can be done automatically and interactively in batch mode or real time, in local or cluster environment, enormously reducing the time needed.
The accumulated model library improves efficiency in model development; performance can be extended vertically, cutting costs and enhancing practicability.
Support business in real time and get feedback in millisecond.
With a high-performance advantage, it can deal with hundreds of millions of messages on a daily basis.
Complete requirement configuration by using generators, rule engines, parameter configuration, interface operation to get the information needed, lowering costs of system maintenance.
Develop algorithms and complete advanced analytics in customized working environment.
Build models with visualizations, and complete analytics and model building using built-in and customized algorithm modules.
For those who are familiar with R, Python and Scala, they can cooperate with each other on this platform, jointly creating business analytic models.
Support R, Python and Scala etc., and allows developers to upload or use external libraries.
Integrate multiple machine learning engines and is supportive of teamwork.
Access data from Hadoop clusters using Apache Spark and Apache Impala, instead of only processing sampled data that is compressed.
Support calling distributed computing engines such as Spark and MapReduce when the analytic flow is running, which can improve efficacy in data processing.
For those who are familiar with R, Python and Scala, they can cooperate with each other on this platform, jointly creating business analytic models.
Develop together among team members, improving efficiency in development.
Support model sharing, avoiding repeated work.
Track and monitor historical revisions; flexible switch between versions and grey release extremely improve flexibility in data analysis.
Model developing, debugging, testing, and running in production environment can be completed in one stop, allowing uninterrupted integration and delivery.
Automated scheduling can be executed as the time set or in a period cycle; globalized monitoring allows you to keep up with the execution of scheduling.
The platform can be deployed in a machine room or on cloud, and the cluster size can be adjusted accordingly.
Model loading management for metric rules, machine learning and deep learning.
Streaming data combined with model computing delivers a fast processing speed, helping to make a lightning fast decision.
Flexible hot configuration, highly reliable design, and offline system docking.
Analysis on customers’ footprint is the basic condition to predict customers’ consuming behaviors. After analyzing expenditures of customers in different sites, the consuming preference and behavior change of customers can be structured. Meanwhile, you can get clues about whether the scope of consuming is widening or narrowing. Finally, a dynamic and changeable map of customer consumption is obtained.
Conduct statistical analysis on on-line and off-line customer services according to real-time data to obtain different characteristics within service personnel, and find the factors that affect customer services most, thus to improve service quality based on the results. In addition, the service quality in different branches can be collected to obtain the insight of service discrepancy, and help the branches improve their services.
Risk control has always been the key point of financial institutions. Therefore, it is quite important to conduct risk management to help enterprises progress smoothly. With real-time analysis, exceptional transactions can be tracked quickly, and relevant staff can take measures more quickly to respond to these transactions. Meanwhile, early warning can be sent out more quickly with real time analysis on risks, which greatly prevents risks from being formed.
At present, the necessary demand of online shopping platform has increased the provision of products and financial installment service, which not only directly provides customers with more flexible payment methods and significantly improves the user purchase experience, but also increases brand stickiness and attracts potential customers.
Based on the customer portrait and product label system, DataCanvas makes full use of big data technology, AI technology and expert strategy to fully enable to mine potential customers and personalized recommendation for different people. Through the technology of millisecond data update, user behavior analysis, precision marketing and other technologies, we can improve the product click rate, purchase conversion rate, turnover and other core operating data of the linked bank channel, so as to achieve cost reduction and efficiency increase.
Increase of Click Through Rate
Increase of Conversion Rate
Cooperative Partner
According to the basic information of customers, transaction behavior, purchase history, footprint information, channel preference, risk preference, product preference, etc., a complete customer portrait label system is constructed for customer screening and precise product matching.
It flexibly configures the strategy of product side and adjusts the result and order of recommendation.
Products and services can be accurately pushed to customers through various fields of app, SMS, customer center, WeChat and other channels.
According to the historical sales situation, customer preference and channel preference, the hot products are recommended to the target customers.
With powerful real-time computing power, it can monitor key events, dynamic footprints and recent browsing indicators in real time to capture real-time behaviors and interests, and improve the accuracy of recommendation.
Embedded classic and cutting-edge recommendation algorithm library, including traditional statistical machine learning and cutting-edge deep learning.
According to customer portraits, product portraits and real-time features, accurately match customers with products, channels and fields.
Through rich portrait system and powerful algorithm to recommend products and services in real time, improve the purchase conversion rate.